Efficient Deep Models for Monocular Road Segmentation.

IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2016

Abstract: This paper addresses the problem of road scene segmentation in conventional
RGB images by exploiting recent advances in semantic segmentation via convolutional neural networks (CNNs).
Segmentation networks are very large and do not currently run at interactive
frame rates.
To make this technique applicable to robotics we propose several architecture refinements that provide the best trade-off between segmentation quality and runtime.
This is achieved by a new mapping between classes and filters at the expansion side of the network.
The network is trained end-to-end and yields precise road/lane predictions at the original input resolution in roughly 50ms.
Compared to the state of the art, the network achieves top accuracies on the KITTI dataset for road and lane segmentation while providing a 20X speed-up.
We demonstrate that the improved efficiency is not due to the road segmentation task.
Also on segmentation datasets with larger scene complexity, the accuracy does not suffer from the large speed-up.